Comparison of model order reduction techniques for digital predistortion of power amplifiers
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URI: http://hdl.handle.net/10902/11468ISBN: 978-2-87487-043-9
ISBN: 978-2-87487-042-2
ISBN: 978-1-5090-1514-6
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Gilabert Pinal, Pere Lluís; Montoro López, Gabriel; Wang, Teng; Ruiz Lavín, María de las Nieves; García García, José ÁngelFecha
2016Derechos
© 2016 EuMA (European Microwave Association)
Publicado en
46th European Microwave Conference (EuMC), London, 2016, 182-185
Editorial
IEEE
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Palabras clave
Compressed sensing
Digital predistortion
Partial least squares
Power amplifier
Principal component analysis
Resumen/Abstract
This paper compares and discusses four techniques for model order reduction based on compressed sensing (CS), less relevant basis removal (LRBR), principal component analysis (PCA) and partial least squares (PLS). CS and PCA have already been used for reducing the order of power amplifier (PA) behavioral models for digital predistortion (DPD) purposes. While PLS, despite being popular in some signal processing areas, to the best author’s knowledge, still has not been used in the PA linearization field. Finally, the LRBR is an iterative search algorithm proposed by the authors in this paper for the sake of comparison. Experimental results are presented and the advantages and drawbacks of each method discussed.
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